You will lead a team of data engineers, own the technical roadmap for our cloud data stack (Snowflake, Azure, dbt), and partner closely with analytics, product, and operations stakeholders to turn raw data into reliable, well-modeled assets that teams can trust and build on. This is a hands-on leadership role — the ideal candidate is equally comfortable reviewing a dbt PR, designing a new data model, and running a team planning session.
Key Responsibilities:
- Serve as the internal authority on Snowflake architecture, performance tuning, cost governance, and security (RBAC, data masking, network policies).
- Design and maintain a scalable, well-documented warehouse structure including database, schema, and object hierarchy standards.
- Drive Snowflake feature adoption — dynamic tables, Snowpark, data sharing, and emerging capabilities.
- Own the dbt project end-to-end: modeling conventions, testing strategy, documentation standards, and CI/CD integration.
- Establish and enforce a layered modeling approach (staging → intermediate → marts) that downstream teams can trust and self-serve.
- Lead the design and operation of data pipelines on Azure, including Azure Data Factory
- Ensure reliable, monitored data movement from source systems into Snowflake with clear SLAs and alerting.
- Manage, mentor, and grow a team of data engineers — running regular 1:1s, setting performance goals, and building a culture of engineering excellence.
- Own hiring, onboarding, and career development for the data engineering function.
- Translate business requirements from stakeholders into well-scoped, prioritized engineering work.
- Define and enforce organization-wide ETL/ELT best practices, naming conventions, and code review standards.
- Champion data quality, observability (e.g., dbt tests), and lineage across the platform.
- Proactively identify opportunities for data process improvements and lead initiatives to implement these changes.
Snowflake Platform
dbt & Transformation Layer
Azure Data Ecosystem
Team Leadership
Standards & Governance
Qualifications:
Bachelor’s degree in computer science, Information Technology, Engineering, or a related field
7+ years in data engineering, with at least 2 years in a team lead or management role
Deep, production-grade Snowflake expertise — you have designed warehouse architectures, optimized query performance, managed costs, and implemented enterprise security controls
Fluency with dbt: you have built and maintained dbt projects at scale and can articulate opinionated best practices
Hands-on Azure Data Factory experience
Strong SQL skills and proficiency in Python for data pipeline development and automation
Proven ability to lead and grow a small team while remaining technically engaged
Strong communicator who can translate complex data concepts to non-technical stakeholders and contribute to strategic planning conversations
Nice to have:
Familiarity with data observability tooling (Elementary, Monte Carlo, or similar).
Exposure to Snowflake Cortex, Snowpark ML, or other AI/ML capabilities on Snowflake
Experience in a high-growth or scale-up environment where standards were built from the ground up
Similar Jobs
What you need to know about the Boston Tech Scene
Key Facts About Boston Tech
- Number of Tech Workers: 269,000; 9.4% of overall workforce (2024 CompTIA survey)
- Major Tech Employers: Thermo Fisher Scientific, Toast, Klaviyo, HubSpot, DraftKings
- Key Industries: Artificial intelligence, biotechnology, robotics, software, aerospace
- Funding Landscape: $15.7 billion in venture capital funding in 2024 (Pitchbook)
- Notable Investors: Summit Partners, Volition Capital, Bain Capital Ventures, MassVentures, Highland Capital Partners
- Research Centers and Universities: MIT, Harvard University, Boston College, Tufts University, Boston University, Northeastern University, Smithsonian Astrophysical Observatory, National Bureau of Economic Research, Broad Institute, Lowell Center for Space Science & Technology, National Emerging Infectious Diseases Laboratories



